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dspy-agent-skills

dspy-agent-skills contiene 5 skills recopiladas de intertwine, con cobertura ocupacional por repositorio y páginas de detalle dentro del sitio.

skills recopiladas
5
Stars
264
actualizado
2026-05-25
Forks
23
Cobertura ocupacional
2 categorías ocupacionales · 100% clasificado
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Skills en este repositorio

dspy-advanced-workflow
Desarrolladores de software

Drive a complete DSPy 3.2.x project end-to-end — spec → program → metric → baseline → GEPA optimize → export → deploy. Orchestrates the other four DSPy skills (dspy-fundamentals, dspy-evaluation-harness, dspy-gepa-optimizer, dspy-rlm-module) in the correct order. Use this for any non-trivial DSPy build from scratch.

2026-05-25
dspy-evaluation-harness
Analistas de garantía de calidad de software y probadores

Build DSPy evaluation harnesses with rich-feedback metrics that are essential for GEPA optimization. Use when writing a metric function, calling dspy.Evaluate, splitting dev/val sets, debugging "why is my optimizer not improving?", or designing CI-ready DSPy eval suites.

2026-05-25
dspy-fundamentals
Desarrolladores de software

Write idiomatic DSPy 3.2.x programs — typed Signatures, dspy.Module subclasses, Predict/ChainOfThought/ReAct/ProgramOfThought, and save/load. Use this when starting any new DSPy project or when fixing non-idiomatic DSPy code (hard-coded prompts, ad-hoc string templates, untyped outputs, non-serializable classes).

2026-05-25
dspy-gepa-optimizer
Desarrolladores de software

Optimize DSPy programs with dspy.GEPA — the reflective/evolutionary optimizer that is the 2026 gold standard for DSPy (beats MIPROv2 on complex tasks with far fewer rollouts when the metric returns rich feedback). Use when the user says optimize, compile, GEPA, reflective optimization, or "make this program better" and a DSPy program + metric + trainset exist.

2026-05-25
dspy-rlm-module
Desarrolladores de software

Use dspy.RLM (Recursive Language Model) for reasoning over contexts too large to fit in an LLM's working window — entire codebases, long logs, massive documents, or multi-step data exploration that needs a sandboxed Python REPL. Use when the input is >100k tokens, needs recursive chunking, or benefits from the LLM writing and running code to probe data.

2026-04-21